When receiving radar pulses it is common for a recorded pulse train to contain pulses from many different emitters. The radar pulse deinterleaving problem is the task of separating out these pulses by the emitter from which they originated. Notably, the number of emitters in any particular recorded pulse train is considered unknown. In this paper, we define the problem and present metrics that can be used to measure model performance. We propose a metric learning approach to this problem using a transformer trained with the triplet loss on synthetic data. This model achieves strong results in comparison with other deep learning models with an adjusted mutual information score of 0.882.
View on arXiv@article{gunn2025_2503.13476, title={ Radar Pulse Deinterleaving with Transformer Based Deep Metric Learning }, author={ Edward Gunn and Adam Hosford and Daniel Mannion and Jarrod Williams and Varun Chhabra and Victoria Nockles }, journal={arXiv preprint arXiv:2503.13476}, year={ 2025 } }